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Reactive Power Optimization for Voltage Stability in Energy Internet Based on Graph Convolutional Networks and Deep Q-learning

机译:基于图形卷积网络和深Q学习的能源互联网电压稳定性的无功功率优化

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The rapid response of reactive power compensation is crucial to guarantee the stable operation of energy Internet (EI) with variable loads and distributed power generations. Therefore, this paper proposes an intelligent approach for reactive power optimization in EI based on graph convolutional networks (GCN) and deep Q-learning (DQN). With the adjacency matrix that represents topology of EI, the GCN in the proposed approach fuses the monitoring data of EI nodes for a comprehensive feature extraction. Furthermore, reactive power optimization of EI during voltage sags is solved by DQN method in which GCN is used as the Q network. Thus, the optimized output of reactive power compensation device can be put into EI to ensure the voltage stability. The case study on the simulation data of an EI system that considers photovoltaic and battery storage system verifies the effectiveness of the proposed approach. The result shows that the proposed approach achieves fast response to the faults and sudden increase of load in EI, and gives more accurate reactive power compensation than the common control method of reactive power compensation device.
机译:无功补偿的快速响应对于保证能量互联网(EI)的稳定运行具有可变负载和分布式电力。因此,本文提出了一种基于图形卷积网络(GCN)和深Q学习(DQN)的EI中无功功率优化的智能方法。利用代表EI拓扑的邻接矩阵,所提出的方法中的GCN熔化EI节点的监视数据以进行全面的特征提取。此外,通过DQN方法解决了电压凹凸期间EI的无功功率优化,其中GCN用作Q网络。因此,可以将优化的电动功率补偿装置输出放入EI以确保电压稳定性。考虑光伏电池存储系统的EI系统模拟数据的案例研究验证了所提出的方法的有效性。结果表明,该方法达到了对EI负载的故障和突然增加的快速响应,并提供比无功补偿装置的共同控制方法更精确的无功功率补偿。

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